How to use artificial intelligence to reduce traffic accidents?
Some technologies to watch out for in 2023 that will focus on road safety.
What types of technologies will power the future of mobility?
The future of technology is electronic, shared, connected, autonomous and data-driven. In order to read the data, we need technologies such as artificial intelligence. Artificial intelligence will be a key driver of future mobility. It will help self-driving cars recognize roads, understand radar, understand computer vision and make decisions, and can also be used for route optimization. When artificial intelligence is added to mobility, it will bring comfort, convenience and entertainment.
How can artificial intelligence help reduce traffic accidents?
According to the World Health Organization, about 1.3 million people die in road traffic accidents every year. Another 20 million to 50 million people suffer non-fatal injuries, many of which are disabling. With the use of artificial intelligence, road accidents can be curbed, especially in the Metaverse, which brings together technology and science to reduce human errors. This can help with accurate driver assessments, driver profiling based on driving skills, better collection and analysis of crash data, and more.
Is the AI also equipped with surveillance cameras and warning signals?
Traffic sensors are designed to detect simple traffic accidents, such as cars running red lights or speeding. They also help quantitatively detect street conditions, for example by counting the number of passing vehicles, allowing operators to identify congestion before it occurs.
IoT sensors send information to data centers where artificial intelligence performs different tasks such as congestion measurement. Identify the license plates of cars speeding by in adverse conditions, gain insights into traffic conditions from activity on the road, and more. As a result, every year we see more and more solutions being deployed with the ultimate goal of achieving a zero-accident society.
How do you think about the future of travel?
With the implementation of artificial intelligence, the mobile space is becoming more and more intelligent. I believe that by 2030, the first thing we will see is electric vehicles. We will also see automation, especially in the public sector, such as minibuses and taxis.
Therefore, multiple applications will be introduced and soon artificial intelligence will completely replace drivers on the roads, which will eliminate the human element and road safety will reach the highest possible level. In the next few years, approximately 10% to 15% of vehicles will be driven by integrated technologies.
What technologies will focus on road safety in 2023?
The AI-powered Metaverse is a top technology. The Metaverse is a 3D environment where not only can we walk and dance, we can also drive in the Metaverse. We can construct multiple scenarios in an environment that is safer than public roads.
That’s not all, drivers can receive training, which can reduce the number of accidents, improve driving behavior, improve road safety for billions of people around the world, and help achieve a zero-accident society.
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